End-to-End Simultaneous Translation System for IWSLT2020 Using Modality Agnostic Meta-Learning
HouJeung Han, Mohd Abbas Zaidi, Sathish Reddy Indurthi, Nikhil Kumar Lakumarapu, Beomseok Lee, Sang‐Ha Kim
Abstract
In this paper, we describe end-to-end simultaneous speech-to-text and text-to-text translation systems submitted to IWSLT2020 online translation challenge. The systems are built by adding wait-k and meta-learning approaches to the Transformer architecture. The systems are evaluated on different latency regimes. The simultaneous text-to-text translation achieved a BLEU score of 26.38 compared to the competition baseline score of 14.17 on the low latency regime (Average latency 3). The simultaneous speech-to-text system improves the BLEU score by 7.7 points over the competition baseline for the low latency regime (Average Latency 1000).
Topics & Concepts
Computer scienceLatency (audio)Machine translationTransformerEnd-to-end principleArtificial intelligenceBaseline (sea)Speech translationSpeech recognitionNatural language processingTranslation (biology)TelecommunicationsMessenger RNAVoltageQuantum mechanicsGeologyPhysicsChemistryOceanographyGeneBiochemistryNatural Language Processing TechniquesSpeech Recognition and SynthesisTopic Modeling